Zhang Zhen, Zhao Xiaoping, Gu Jingfeng, Chen Xuelian, Wang Hongyan, Zuo Simin, Zuo Mengzhe, Wang Jianliang
Department of Radiology, Affiliated Kunshan Hospital of Jiangsu University, Kunshan, China.
Department of Radiology, Affiliated The Fifth People's Hospital of Kunshan, Kunshan, China.
Abdom Radiol (NY). 2025 Jan 25. doi: 10.1007/s00261-025-04807-0.
To develop a nomogram based on the radiomics features of tumour and perigastric adipose tissue adjacent to the tumor in dual-layer spectral detector computed tomography (DLCT) for lymph node metastasis (LNM) prediction in gastric cancer (GC).
A retrospective analysis was conducted on 175 patients with gastric adenocarcinoma. They were divided into training cohort (n = 125) and validation cohort (n = 50). The radiomics features from the tumour and perigastric fat based on DLCT spectral images were extracted to construct radiomics models for LNM prediction using Lasso-GLM method. Preoperative clinicopathological features, DLCT routine parameters, and the optimal radiomics models were analyzed to establish the clinical-DLCT model, clinical-DLCT-radiomics model and a nomogram. All models were internally validated using the Bootstrap method and evaluated using receiver operating characteristic (ROC) curve.
The area under the ROC curve (AUC) values of optimal radiomics models based on tumour (Model 1) and perigastric fat (Model 2) were 0.923 and 0.822 in training cohort, 0.821 and 0.767 in validation cohort. The clinical-DLCT model based on Nct and ECV demonstrated an AUC value of 0.728 in training cohort and 0.657 in validation cohort. The clinical-DLCT-radiomics model and the nomogram were established by incorporating Nct, ECV and the linear predictive values of Models 1 and 2, exhibiting superior predictive efficacy with an AUC value of 0.935 in training cohort and 0.876 invalidation cohort.
The nomogram based on Nct, ECV, and the radiomics features of tumour and perigastric fat in DLCT demonstrates potential for predicting LNM in GC. This approach may contribute to the development of treatment strategies and improve the clinical outcomes for GC patients.
基于双层光谱探测器计算机断层扫描(DLCT)中肿瘤及肿瘤周围胃周脂肪组织的影像组学特征,构建列线图,用于预测胃癌(GC)的淋巴结转移(LNM)。
对175例胃腺癌患者进行回顾性分析。将他们分为训练队列(n = 125)和验证队列(n = 50)。基于DLCT光谱图像提取肿瘤和胃周脂肪的影像组学特征,使用套索广义线性模型(Lasso - GLM)方法构建用于LNM预测的影像组学模型。分析术前临床病理特征、DLCT常规参数和最佳影像组学模型,以建立临床 - DLCT模型、临床 - DLCT - 影像组学模型和列线图。所有模型均采用自抽样法进行内部验证,并使用受试者操作特征(ROC)曲线进行评估。
基于肿瘤的最佳影像组学模型(模型1)和基于胃周脂肪的最佳影像组学模型(模型2)在训练队列中的ROC曲线下面积(AUC)值分别为0.923和0.822,在验证队列中分别为0.821和0.767。基于Nct和ECV的临床 - DLCT模型在训练队列中的AUC值为0.728,在验证队列中为0.657。通过纳入Nct、ECV以及模型1和模型2的线性预测值建立了临床 - DLCT - 影像组学模型和列线图,其预测效能优越,在训练队列中的AUC值为0.935,在验证队列中为0.876。
基于Nct、ECV以及DLCT中肿瘤和胃周脂肪的影像组学特征的列线图,在预测GC的LNM方面具有潜力。这种方法可能有助于制定治疗策略并改善GC患者的临床结局。